A roadmap for systematic identification and analysis of multiple biases in causal inference
A roadmap for systematic identification and analysis of multiple biases in causal inference
Observational studies examining causal effects rely on unverifiable causal assumptions, the violation of which can induce multiple biases. Quantitative bias analysis (QBA) methods examine the sensitivity of findings to such violations, generally by producing bias-adjusted estimates under alternative assumptions. Common strategies for QBA address either a single source of bias or multiple sources one at a time, thus not informing the overall impact of the potential biases. We propose a systematic approach (roadmap) for identifying and analysing multiple biases together. Briefly, this consists of (i) articulating the assumptions underlying the primary analysis through specification and emulation of the "ideal trial" that defines the causal estimand of interest and depicting these assumptions using casual diagrams; (ii) depicting alternative assumptions under which biases arise using causal diagrams; (iii) obtaining a single estimate simultaneously adjusted for all biases under the alternative assumptions. We illustrate the roadmap in an investigation of the effect of breastfeeding on risk of childhood asthma. We further use simulations to evaluate a recent simultaneous adjustment approach and illustrate the need for simultaneous rather than one-at-a-time adjustment to examine the overall impact of biases. The proposed roadmap should facilitate the conduct of high-quality multiple bias analyses.
Rushani Wijesuriya、Rachael A. Hughes、John B. Carlin、Rachel L. Peters、Jennifer J. Koplin、Margarita Moreno-Betancur
医学研究方法临床医学
Rushani Wijesuriya,Rachael A. Hughes,John B. Carlin,Rachel L. Peters,Jennifer J. Koplin,Margarita Moreno-Betancur.A roadmap for systematic identification and analysis of multiple biases in causal inference[EB/OL].(2025-04-11)[2025-04-27].https://arxiv.org/abs/2504.08263.点此复制
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